Title of article :
An intelligent model for predicting the day-ahead deregulated market clearing price: A hybrid NN-PSO-GA approach
Author/Authors :
Ostadi, B. Faculty of Industrial and Systems Engineering - Tarbiat Modares University, Tehran, Iran , Motamedi Sedeh, O. Faculty of Industrial and Systems Engineering - Tarbiat Modares University, Tehran, Iran , Husseinzadeh Kashan, A. Faculty of Industrial and Systems Engineering - Tarbiat Modares University, Tehran, Iran , Amin-Naseri, M.R. Faculty of Industrial and Systems Engineering - Tarbiat Modares University, Tehran, Iran
Abstract :
Under the restructuring of the electric power industry and transformation
of the traditional vertically integrated electric utility structure to the competitive market
scheme, Market Clearing Price (MCP) prediction models have become essential for all
generation companies (GenCos). In this paper, a hybrid model is presented to predict
hourly electricity MCP. The proposed model contains a Neural Network (NN), Particle
Swarm Optimization (PSO), and Genetic Algorithm (GA). The NN is used as a major
forecasting module for prediction, PSO is applied to improve the traditional neural network
learning capability, and GA is applied to optimize NN architecture. The main contribution
of this paper includes: (a) presentation of a new hybrid intelligent model for market
clearing price prediction; (b) application of K-means algorithm to clustering NN's test set
and seasonality pattern detection; and (c) performance evaluation of the proposed model
by improved Mean Absolute Error (MAE) with a penalty factor for positive error. The
proposed method has been tested for the real-world electricity market of Iran within one
month in each year of 2010-2013; obtained results show that the average weighted MAE
designed for prediction purposes is equal to 0.12; the prediction accuracy of MCP by the
proposed model can be improved by more than 6.7% and 4% in MAE , compared to a
simple NN by a combination of NN and bat algorithm.
Keywords :
Neural network , Genetic algorithm , Particle swarm optimization , Market clearing price , Pay as a bid
Journal title :
Scientia Iranica(Transactions E: Industrial Engineering)